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A New Integrated Approach Based on the Iterative Super-Resolution Algorithm and Expectation Maximization for Face Hallucination

机译:一种基于迭代超分辨率算法的新综合方法和面对幻觉的预期最大化

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This paper proposed and verified a new integrated approach based on the iterative super-resolution algorithm and expectation-maximization for face hallucination, which is a process of converting a low-resolution face image to a high-resolution image. The current sparse representation for super resolving generic image patches is not suitable for global face images due to its lower accuracy and time-consumption. To solve this, in the new method, training global face sparse representation was used to reconstruct images with misalignment variations after the local geometric co-occurrence matrix. In the testing phase, we proposed a hybrid method, which is a combination of the sparse global representation and the local linear regression using the Expectation Maximization (EM) algorithm. Therefore, this work recovered the high-resolution image of a corresponding low-resolution image. Experimental validation suggested improvement of the overall accuracy of the proposed method with fast identification of high-resolution face images without misalignment.
机译:本文提出并验证了基于迭代超分辨率算法的新综合方法和对面幻觉的预期最大化,这是将低分辨率面部图像转换为高分辨率图像的过程。由于其较低的精度和时间消耗,超分辨率泛型图像贴片的当前超分辨率的稀疏表示不适用于全局脸部图像。为了解决这一点,在新方法中,培训全局面部稀疏表示用于在局部几何共同发生矩阵之后重建具有未对准变化的图像。在测试阶段,我们提出了一种混合方法,它是使用期望最大化(EM)算法的稀疏全局表示和本地线性回归的组合。因此,这项工作恢复了相应的低分辨率图像的高分辨率图像。实验验证建议提高所提出的方法的整体准确性,快速识别高分辨率面部图像而没有未对准。

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